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Feature Selection and Extraction Along with Electricity Price Forecasting Using Big Data Analytics

机译:特征选择和提取以及使用大数据分析进行电价预测

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The most important part of the smart grid(SG)is prediction of electricity price and by this prediction SG becomes cost efficient. To tackle with large amount of data in SG, it is a challenging task for existing techniques to accurately predict the electricity price. So, to handle the above mentioned problem, a framework has been proposed with three different steps: feature selection, feature extraction and classification. The purpose of feature selection is to remove irrelevant data by using extra tree classifier on the basis of pearson correlation coefficient. Feature extraction is performed using t-distributed stochastic neighbor embedding method to reduce redundancy from the selected data. For accurate electricity price forecasting, support vector machine classifier is used. Simulation results show that the proposed framework outperforms than the other methods.
机译:智能电网(SG)最重要的部分是电价预测,通过这种预测,SG变得具有成本效益。为了处理SG中的大量数据,准确预测电价对现有技术来说是一项具有挑战性的任务。因此,为了解决上述问题,我们提出了一个包含三个不同步骤的框架:特征选择、特征提取和分类。特征选择的目的是在pearson相关系数的基础上,使用额外的树分类器去除无关数据。特征提取采用t分布随机邻域嵌入方法,以减少所选数据的冗余。为了准确预测电价,采用了支持向量机分类器。仿真结果表明,该框架的性能优于其他方法。

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